I have a csv-file with a column with strings and I want to read it with pandas. In this file the string null occurs as an actual value and should not be regarded as a missing value.


import pandas as pd
from io import StringIO

data = u'strings,numbers\nfoo,1\nbar,2\nnull,3'

This gives the following output:

  strings  numbers
0     foo        1
1     bar        2
2     NaN        3

What can I do to get the value null as it is (and not as NaN) into the DataFrame? The file can be assumed to not contain any actually missing values.

  • Cannot reproduce the problem. It gives me null as a string. – harvpan Jun 4 '18 at 15:17
  • @HarvIpan when I run their code, it gives NaN as OP says though... hmm – coldspeed Jun 4 '18 at 15:18
  • 1
    @coldspeed, interesting..! I wonder what am I doing wrong. Anyway, yours is a good answer. ~+1. – harvpan Jun 4 '18 at 15:19
  • I use pandas 0.23.0 with python 3.5.2, if that helps... – piripiri Jun 4 '18 at 15:20
  • 1
    @coldspeed, Fyi, I've reversed the dups, this question now target for this old one. Same question, but the answers here are now probably better. – jpp Jun 4 '18 at 15:40

You can specify a converters argument for the string column.

pd.read_csv(StringIO(data), converters={'strings' : str})

  strings  numbers
0     foo        1
1     bar        2
2    null        3

This will by-pass pandas' automatic parsing.

Another option is setting na_filter=False:

pd.read_csv(StringIO(data), na_filter=False)

  strings  numbers
0     foo        1
1     bar        2
2    null        3

This works for the entire DataFrame, so use with caution. I recommend first option if you want to surgically apply this to select columns instead.


The reason this happens is that the string 'null' is treated as NaN on parsing, you can turn this off by passing keep_default_na=False in addition to @coldspeed's answer:

data = u'strings,numbers\nfoo,1\nbar,2\nnull,3'
df = pd.read_csv(io.StringIO(data), keep_default_na=False)

  strings  numbers
0     foo        1
1     bar        2
2    null        3

The full list is:

na_values : scalar, str, list-like, or dict, default None

Additional strings to recognize as NA/NaN. If dict passed, specific per-column NA values. By default the following values are interpreted as NaN: ‘’, ‘#N/A’, ‘#N/A N/A’, ‘#NA’, ‘-1.#IND’, ‘-1.#QNAN’, ‘-NaN’, ‘-nan’, ‘1.#IND’, ‘1.#QNAN’, ‘N/A’, ‘NA’, ‘NULL’, ‘NaN’, ‘n/a’, ‘nan’, ‘null’.

  • Interesting that they have multiple arguments to do the exact same thing... – coldspeed Jun 4 '18 at 15:23
  • 1
    @coldspeed yeah the fact you have different side effects depend on whether na_values is specified or not further complicates things – EdChum Jun 4 '18 at 15:25

we can dynamically exclude 'NULL' and 'null' from the set of default _NA_VALUES:

In [4]: na_vals = pd.io.common._NA_VALUES.difference({'NULL','null'})

In [5]: na_vals
 '#N/A N/A',

and use it in read_csv():

df = pd.read_csv(io.StringIO(data), na_values=na_vals)

Other answers are better for reading in a csv without "null" being interpreted as Nan, but if you have a dataframe that you want "fixed", this code will do so: df=df.fillna('null')

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